DAT300 Applied Deep Learning
Credits (ECTS):10
Course responsible:Fadi al Machot
Campus / Online:Taught campus Ås
Teaching language:Engelsk
Course frequency:Annually
Nominal workload:Lectures: 78 hours. Exercises: 26 hours. Colloquia and self study: 146 hours
Teaching and exam period: The starts in the autumn parallel. The course will be taught / censored in the autumn parallel.
About this course
DAT300 builds upon subjects students have learned in DAT200 - Applied Machine Learning. The covered methodology may include:
- Foundations of artificial neural networks (NN)
- Deep convolutional neural networks (CNN)
- Recurrent neural networks (RNN)
- Autoencoders
- Generative Adversarial Networks
- Zero/Few-shot learning
The course will introduce the theoretical basics of the methods discussed and focus heavily on applications and modelling with real data. The students will learn to build effective and accurate models that, depending on the application, can contribute to several of UN's sustainability goals, among others 3, 11, 12, 14, 15.
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